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Genome2D: a visualization tool for the rapid analysis of bacterial transcriptome data Genome2D is a Windows-based software tool for visualization of bacterial transcriptome and customize

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Genome2D: a visualization tool for the rapid analysis of bacterial

transcriptome data

Addresses: * Molecular Genetics, Groningen Biomolecular Sciences and Biotechnology Institute, University of Groningen, Kerklaan 30, 9751 NN

Haren, The Netherlands † Current address: Sir William Dunn School of Pathology, University of Oxford, South Parks Road, Oxford OX1 3RE,

UK

Correspondence: Anne de Jong E-mail: a.de.jong@biol.rug.nl

© 2004 Baerends et al.; licensee BioMed Central Ltd This is an Open Access article: verbatim copying and redistribution of this article are permitted in all

media for any purpose, provided this notice is preserved along with the article's original URL.

Genome2D: a visualization tool for the rapid analysis of bacterial transcriptome data

Genome2D is a Windows-based software tool for visualization of bacterial transcriptome and customized datasets on linear chromosome

maps constructed from annotated genome sequences Genome2D facilitates the analysis of transcriptome data by using different color

ranges to depict differences in gene-expression levels on a genome map Such output format enables visual inspection of the transcriptome

data, and will quickly reveal transcriptional units, without prior knowledge of expression level cutoff values The compiled version of

Genome2D is freely available for academic or non-profit use from http://molgen.biol.rug.nl/molgen/research/molgensoftware.php

Abstract

Genome2D is a Windows-based software tool for visualization of bacterial transcriptome and

customized datasets on linear chromosome maps constructed from annotated genome sequences

Genome2D facilitates the analysis of transcriptome data by using different color ranges to depict

differences in gene-expression levels on a genome map Such output format enables visual

inspection of the transcriptome data, and will quickly reveal transcriptional units, without prior

knowledge of expression level cutoff values The compiled version of Genome2D is freely available

for academic or non-profit use from http://molgen.biol.rug.nl/molgen/research/

molgensoftware.php

Rationale

Current efforts in whole-genome sequencing have led to a

rapidly increasing number of publicly available bacterial

genome sequences [1,2] Novel technologies, such as

genome-wide transcriptional profiling using DNA microarrays,

ena-bles the study of the transcriptional regulation of various

processes in these sequenced microorganisms, which can,

subsequently, lead to the identification of the regulatory

net-works involved [3-6] Bioinformatics tools that enable one to

predict and/or identify transcription regulatory elements and

terminator sites are publicly available [7-14]

Graphical representations have proved very useful for the

efficient interpretation of large amounts of biological data

(for example, metabolic pathway and gene regulatory

net-work visualization [15-17], transcriptome data analysis and/

or clustering [18,19]) Our group investigates metabolic

path-ways and gene regulatory networks of different

Gram-positive bacteria For easy and rapid interpretation of tran-scriptome data, we required software that enables us to project this onto a linear bacterial genome map, together with additional data (that is, terminator and regulator binding sites) Zimmer and co-workers have previously visualized transcriptome data (displayed as spots) in gene order [20]

However, their program does not allow the inclusion of data

on transcription regulatory and terminator sites or other cus-tomized data Visualization of such information would facili-tate the interpretation of transcriptomes by displaying which genes are coexpressed in a transcriptional unit (an operon [21]), or are transcribed via readthrough from the neighbor-ing gene (or genes), or lead to the formation of antisense RNA The possibility of adding putative binding sites for tran-scriptional regulators onto the genome map would be a quick and convenient way to assess the biological relevance of such operator sites Furthermore, visual analysis can be preferable over a statistical (mathematical) approach, as relevant data

Published: 5 April 2004

Genome Biology 2004, 5:R37

Received: 15 January 2004 Revised: 26 February 2004 Accepted: 11 March 2004 The electronic version of this article is the complete one and can be

found online at http://genomebiology.com/2004/5/5/R37

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can easily be ignored if too high cutoff settings are applied.

We screened several powerful commercial and

public-domain software packages for transcriptome data

visualiza-tion (GenVision (DNAStar, Madison, WI), GeneSpring

(Sili-con Genetics, Redwood City, CA), Kyoto Encyclopedia of

Genes and Genomes (KEGG) [15], EcoCyc [16] and TM4

[19]), but none of these fulfilled our needs We therefore

developed the Microsoft Windows-based program

Genome2D

Genome2D

Genome2D was programmed in Borland Delphi 6 and

com-piled to a Microsoft Windows 9x/NT/2000/XP application

With its graphical user interface the program is easy to use for

non-experts and is easily accessible because of its low system

requirements; it can be installed on a standard local Windows

personal computer, making it fast and safe (when

confidenti-ality is required) The object-oriented programming

environment of Delphi makes it easy to extend Genome2D The CADSys 4 library version 4.2 was used for two-dimen-sional visualization of genomes This library extends the Del-phi vectorial graDel-phics support to include 2D/3D CAD-like functions in applications

The most prominent feature of Genome2D is a drawing mod-ule that generates comprehensive bacterial genome maps, in

a single window screen, that can include specific genetic ele-ments such as transcription terminators or regulator binding sites (Figure 1) The user can easily prepare figures for use in printed or digital format

Display of DNA microarray data in Genome2D is done by coloring the selected genes using a simple input file - that is,

a tab-delimited text file with one column containing the names of the genes to be colored (corresponding to the gene names from the annotation file), and a second column with the color codes (black, white, red, yellow, fuchsia, green, lime,

Genome2D visualization of the genomic organization of L lactis IL1403 (GenBank annotation: AE0051576)

Figure 1

Genome2D visualization of the genomic organization of L lactis IL1403 (GenBank annotation: AE0051576) The figure displays a partial, detailed view in

which putative terminators, determined using the TIGR software package TransTerm, are shown as stem-loop structures [11,46] Predicted promoter

elements (-35 boxes in green; -10 boxes in blue) and cre-boxes (in red) are shown See text for more details.

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blue or aqua), or values, such as gene-expression ratios, on

the basis of which color shades are assigned A defined

number of datasets from a complex transcriptome analysis

experiment (for example, time-course measurements) can be

loaded as separate input files, after which the data can be

shown in animation, a feature that, to our knowledge, is not

present in existing software Clearly, the input files are not

restricted to transcriptome data, and different kinds of

data-sets can be projected, such as from proteome analysis

An umbrella for analysis tools

In addition to its visualization capabilities, Genome2D serves

as a platform for different bioinformatics tools, such as

data-extraction and conversion algorithms, which are summarized

in Table 1 The combination of visualization and information

extraction allows subsequent rounds of analyses, and thus an

increase in data complexity, making Genome2D a powerful

tool in the investigation of bacterial genomics data, especially

from transcriptome and proteome analyses Newly developed

algorithms or tools can be easily implemented within the

framework of the program

Applications

Genome2D can be used for all annotated bacterial genome

sequences In our group, Genome2D is commonly used for

the analysis of genomics data from Bacillus cereus, Bacillus

subtilis, Lactococcus lactis, Lactobacillus plantarum and

Streptococcus pneumoniae We will illustrate the strength of

Genome2D in visualization of transcriptome data hereafter,

using the genomes of B subtilis 168 [22] and L lactis IL1403

[23] as examples

The power of visualization

There are a number of benefits of visual inspection of

tran-scriptome data compared with statistical analyses, which we

will show here using published transcriptome data [24] Most important, visualization can help in discerning true low-level

gene activation For instance, groES was classified as a

ComK-regulated gene, as it met the stringent cutoff set in the

analysis of Hamoen and co-workers [24] However, groEL failed to meet these criteria It has been shown that groES and

groEL are part of a single operon in B subtilis [25] When the

transcriptome data are visualized in Genome2D, one can see

that groEL actually shows some level of activation, suggesting that groEL and groES are indeed activated as an operon

(Fig-ure 2a) Choosing cutoff values to define the set of regulated genes is a rather arbitrary process Moreover, the statistical value of expression data in transcriptome studies is based on

a limited number of data points, and it is therefore not

sur-prising that several possibly relevant genes, such as groEL, will be missed Another example is given in Figure 2b yvrP,

yvrN and yvrM were found to be ComK-activated, whereas yvrO did not meet the criteria [24] Visualization in

Genome2D reveals that yvrO is also slightly activated, and

allows the conclusion that all four genes are likely to form a ComK-dependent operon (Figure 2b)

Second, visualized transcriptome data can reveal putative transcriptional readthrough For example, in the study of Hamoen and colleagues [24] mentioned above, thresholds of significance were partly based on the prior knowledge that

limited readthrough from the comF operon occurs into the

yvyF, flgM and yvyG genes [26] This becomes apparent also

in the Genome2D visualization of the data from Hamoen and

colleagues [24]: the comF operon and downstream-located

genes show differential levels of ComK-induction (Figure 2c)

Extending this notion, one can predict that the reported

ComK-dependent activation of spoIIB/maf/ysxA (radC) and

yqzE is due to readthrough from comC and the comG operon,

respectively (Figure 2d) [24]

Table 1

Features of Genome2D*

Menu Description

File Various input files (for example, FastA, GenBank, Glimmer, Paradox) can be loaded into Genome2D; contains commands to

handle the program Blast Window to perform blast searches on a local system or at NCBI and handle blast results (data extraction)

Search Algorithms to make a weight matrix (consensus sequence/motif); use weight matrix or input motif to screen loaded genome

(see Example analysis: CcpA regulon in L lactis)

Drawing Drawing of whole genome on linear map including additional information (promoter sites, terminators, regulator binding

sites) Individual genes can be colored (manual selection) Changes in gene expression (multiple datasets in animation) are

indicated by variation in color or number (see Application example: ComK regulon in B subtilis)

Tools Algorithms for analysis of genomic DNA, randomization (statistical analysis) and extraction of coding or noncoding regions

Boxes Algorithms to analyze operons, upstream regions, box sequences and promoters Custom adaptation of these algorithms is

easily implemented (see example of K-box analyses [24]) Reformatting Algorithms to convert files to another format

Proteomics Trypsin digestion on a database of proteins

*Online help can be obtained from [45]

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Third, it has been reported that the use of double-stranded

amplicons in DNA array studies might lead to the detection of

antisense RNA, the biological significance of which is unclear

[24] Genome2D helps in the identification of putative

anti-sense RNA detection by showing whether activated genes are

located in reverse orientation downstream of activated genes

In the case of comE, it is known that the comER gene is not

transcribed during competence [27] However, in several

array studies this gene appeared to be strongly activated by

ComK [24,28,29] From Figure 2e, it is apparent that this

activation is due to the hybridization of antisense mRNA

Similarly, the observed expression of yhxD and several genes

from the yck/nucA-nin/tlpC area may be instances of

anti-sense RNA detection (Figure 2f) These observations cannot

be made by normal statistical analyses without visual

inspection

Data extraction and analysis

To our knowledge no software is available in the public

domain that allows information extraction and analysis in the

way Genome2D does To correlate expression with the

activ-ity of specific transcription factors more quantitatively, we

incorporated several algorithms into Genome2D The type of

analyses that can be performed with these algorithms are

exemplified below, using the analysis of the ComK-regulon in

B subtilis and the in silico prediction of the CcpA-regulon of

L lactis.

Hamoen and colleagues [24] used Genome2D to correlate the occurrence of binding sites (K-boxes) to ComK-dependent expression of genes, with the aim of testing whether the presence of a K-box upstream of a gene can be used to predict ComK-activation They assigned genes to putative operons using a widely used algorithm [30] incorpo-rated into Genome2D ('Add First Gene of Operon to Gene

List') Furthermore, they identified all K-boxes in the B

sub-tilis genome (Box searches are available through the Search

menu) and located the closest upstream box for all genes and operons ('Add Nearest Box to Gene List') Finally, the pro-gram is able to link predicted binding sites to the genes located closest to the box ('Add Nearest Gene to Boxlist') Using these and additional algorithms, the authors showed that the predictive value of a K-box can be significantly improved by taking into account genome organization, addi-tional ComK-binding motifs, and binding sites for RNA polymerase [24]

Prediction of the CcpA regulon in L lactis

As is the case in other bacteria, many L lactis ssp lactis

IL1403 genes are of unknown function [23,31] Prediction of gene regulation can implicate unknown proteins in certain cellular processes and, by directing genetics approaches, can help to assign functions This is illustrated by the prediction

of the CcpA-regulon (sugar catabolism control) in L lactis

IL1403 using Genome2D We searched for and visualized putative CcpA-binding sites and promoter elements in the

Demonstration of the power of visualization in transcriptome analyses

Figure 2

Demonstration of the power of visualization in transcriptome analyses The dataset used is from Hamoen and colleagues [24] The strength of up- or

downregulation is depicted by the intensity of the color Stem-loop structures indicate annotated terminators (a,b) Probable cases of low-level activation

Genes are colored on the basis of expression ratios from DNA macroarray experiments [24], without applying a stringent cutoff Red shades indicate ComK-dependent activation, whereas green shows downregulation Gray shades indicate ratios of around 1 Stem-loop structures are used to depict

annotated terminators K-boxes are shown by vertical red lines (c,d) Putative cases of transcriptional readthrough Red shades indicate significant ComK-dependent expression K-boxes are depicted by vertical green lines Gray genes are not significantly ComK-ComK-dependent (e,f) Probable cases in which

antisense RNA has a role (colors and symbols identical to (c) and (d)).

ydiJ ydiK ydiL groES groEL

yvyG flgM yvyF comFC comFB comFA yviA flgK

K yhxD yhjA

yvrL yvrM yvrN yvrO

ysxA maf spoIIB com

C

yqzE comGG comGE yqzG comGF comGD comGCcomGB comGA yqxL

(f) (e)

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genome of L lactis Using the search-module in Genome2D

(<Search>, 'Make Trained Set') and a list of 36

catabolite-responsive element (cre-box) sequences from several

Gram-positive bacteria (see Additional data file 1), a weight matrix

[32] was made that generated the consensus sequence

ATGWAARCGTTTWCA (where W represents A or T, and R

represents A or G) (see Additional data file 2) Subsequent

screening (<Search>, 'Search Trained Set') for this

consen-sus sequence, with an arbitrary cutoff of 8 (a perfect match

would give a score of 10.8 with our weight matrix), identified

1,807 putative cre-boxes in the genome of L lactis IL1403.

Around 43% of these boxes are located in intergenic regions

As CcpA can act as a repressor or activator depending on the

position of a cre-box relative to the RNA polymerase binding

site [33], consensus -35 and -10 promoter element positions

[34] of genes were predicted in the genome of L lactis IL1403

using the MEME motif search routine [35] and Genome2D

(A.L Zomer, G Buist, J.K and O.P.K, unpublished data) The

prediction was performed on intergenic regions from the L.

lactis IL1403 genome, the primary location for promoter

elements, which were extracted using Genome2D Finally, the

datasets from the cre-box and promoter element predictions

were visualized onto the linear genome map of L lactis

IL1403 (see Figure 1 and Additional data file 3) Visual

inspection confirmed the presence of operons previously

described as regulated by CcpA [36-38] Thirteen L lactis

genes (out of 116 putative CcpA-regulated genes) have

coun-terparts in B subtilis, on the basis of protein sequence

com-parisons using BLASTP (e-values were lower than 10-49) ([39]

and see Additional data file 4) The 13 B subtilis genes were

among those that were recently shown to be CcpA-regulated

in B subtilis using DNA macroarray analyses [40], indicating

that Genome2D can be used to generate relevant predictions

on gene regulation However, we would like to emphasize that

the in silico prediction of gene regulation has to be

corrobo-rated by 'real' biological experiments, such as genome-wide

transcriptome analysis [24,41,42]

Conclusions

Our analyses of transcriptome data in relation to the activity

of specific transcription factors and their operator sites

required a more flexible genome visualization program than

is currently publicly available We therefore developed

Genome2D, a software tool that enables visualization of

tran-scriptome data onto a linear map of an annotated bacterial

genome and at the same time highlights additional features,

such as putative regulatory sequences and terminators The

combination of information extraction and visualization

facilitates rapid, easy and intuitive analysis of genomics data,

and in our research group Genome2D proved to be of great

assistance in the study of transcriptome data New algorithms

can be rapidly implemented in the Genome2D program menu

structure Regular updates of Genome2D will be available via

the Internet [43] Because of the exponential increase of

pub-licly available bacterial genome sequences and large-scale

experiments, tools like Genome2D will become indispensable for the interpretation of complex datasets, such as those from transcriptome and proteome studies

Additional data files

The following additional data are available with the online

version of this article: a list of cre-box sequences found in

Gram-positive bacteria (Additional data file 1); a screen dump

from Genome2D showing the cre-box weight matrix

(Addi-tional data file 2); a Genome2D input (tab-delimited text) file

with the coordinates of the identified cre-boxes and promoter elements in the genome of L lactis IL1403 (color file) (Addi-tional data file 3); a table of cre-boxes identified in promoters

of genes in the L lactis IL1403 genome (Additional data file

4) All additional data files can also be obtained from [44]

Additional data file 1

A list of cre-box sequences found in Gram-positive bacteria

Click here for additional data file Additional data file 2

A screen dump from Genome2D showing the cre-box weight

matrix

A screen dump from Genome2D showing the cre-box weight

matrix Click here for additional data file Additional data file 3

A Genome2D input (tab-delimited text) file with the coordinates of

the identified cre-boxes and promoter elements in the genome of L

lactis IL1403

A Genome2D input (tab-delimited text) file with the coordinates of

the identified cre-boxes and promoter elements in the genome of L

lactis IL1403

Click here for additional data file Additional data file 4

A table of cre-boxes identified in promoters of genes in the L lactis

IL1403 genome

A table of cre-boxes identified in promoters of genes in the L lactis

IL1403 genome Click here for additional data file

Acknowledgements

The authors acknowledge Piero Valagussa for development and distribution

of CADSys 4 library version 4.2 and thank Aldert Zomer for performing the MEME-search They are also much obliged to the members of the Molecu-lar Genetics group for their valuable comments and suggestions to improve the program.

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